Chapter 10. Sales Discovery
Throughout this book, we have shared the driving forces in the creation of Qlik Sense and key capabilities to aid in helping organizations make better business decisions. This chapter is the first of four that will apply Qlik Sense to the challenges of analyzing sales performance within your organization. This example and many others are available for you to explore live at http://sense-demo.qlik.com. Please bookmark this link as additional demonstrations and examples are constantly being added and updated. Now, let's turn our attention to the following challenge of sales analysis and how Qlik Sense addresses this common business challenge.
In this chapter, we will cover the following topics:
- Common sales analysis problems
- The unique way Qlik Sense addresses these problems
- How the Sales Discovery application was built
The business problem
Analyzing sales information can be a difficult process for any organization, and is critical to meeting sales expectations and understanding customer demand signals. What makes sales analysis so difficult is that many perspectives can be taken on the enormous amount of information that is captured during the sales process.
Some key questions include:
- Who are our top customers?
- Who are our most productive sales representatives?
- How are our high margin products selling and to whom?
The key thing here is that during the analysis process, one answered question always leads to further questions depending on the results; in other words, the analysis process's diagnostics. These paths to discovery cannot be precalculated or anticipated. With this in mind, let's take a look at how the Sales Discovery application seeks to meet these requirements.
- 虛擬儀器設計測控應用典型實例
- 網絡服務器架設(Windows Server+Linux Server)
- Visual FoxPro 6.0數據庫與程序設計
- 影視后期制作(Avid Media Composer 5.0)
- 物聯網與云計算
- 自動檢測與轉換技術
- AutoCAD 2012中文版繪圖設計高手速成
- Hybrid Cloud for Architects
- 工業機器人應用案例集錦
- 運動控制系統
- Mastering Game Development with Unreal Engine 4(Second Edition)
- 嵌入式操作系統原理及應用
- Access 2007數據庫入門與實例應用金典
- Learning Elastic Stack 6.0
- 人工智能與大數據技術導論